College of Artificial Intelligence, National University of Defense Technology Changsha, Hunan, 410073, China.
College of Artificial Intelligence, National University of Defense Technology Changsha, Hunan, 410073, China.
Neuroimage. 2018 Jun;173:127-145. doi: 10.1016/j.neuroimage.2018.02.036. Epub 2018 Feb 21.
Recently, resting-state functional magnetic resonance imaging (fMRI) studies have been extended to explore fluctuations in correlations over shorter timescales, referred to as dynamic functional connectivity (dFC). However, the impact of global signal regression (GSR) on dFC is not well established, despite the intensive investigations of the influence of GSR on static functional connectivity (sFC). This study aimed to examine the effect of GSR on the performance of the sliding-window correlation, a commonly used method for capturing functional connectivity (FC) dynamics based on resting-state fMRI and simultaneous electroencephalograph (EEG)-fMRI data. The results revealed that the impact of GSR on dFC was spatially heterogeneous, with some susceptible regions including the occipital cortex, sensorimotor area, precuneus, posterior insula and superior temporal gyrus, and that the impact was temporally modulated by the mean global signal (GS) magnitude across windows. Furthermore, GSR substantially changed the connectivity structures of the FC states responding to a high GS magnitude, as well as their temporal features, and even led to the emergence of new FC states. Conversely, those FC states marked by obvious anti-correlation structures associated with the default model network (DMN) were largely unaffected by GSR. Finally, we reported an association between the fluctuations in the windowed magnitude of GS and the time-varying EEG power within subjects, which implied changes in mental states underlying GS dynamics. Overall, this study suggested a potential neuropsychological basis, in addition to nuisance sources, for GS dynamics and highlighted the need for caution in applying GSR to sliding-window correlation analyses. At a minimum, the mental fluctuations of an individual subject, possibly related to ongoing vigilance, should be evaluated during the entire scan when the dynamics of FC is estimated.
最近,静息态功能磁共振成像(fMRI)研究已经扩展到探索更短时间尺度上的相关性波动,称为动态功能连接(dFC)。然而,尽管对全局信号回归(GSR)对静态功能连接(sFC)的影响进行了深入研究,但 GSR 对 dFC 的影响仍未得到很好的确定。本研究旨在检查 GSR 对滑动窗口相关(一种基于静息态 fMRI 和同时 EEG-fMRI 数据捕捉功能连接(FC)动态的常用方法)性能的影响。结果表明,GSR 对 dFC 的影响具有空间异质性,一些易感区域包括枕叶、感觉运动区、楔前叶、后岛叶和颞上回,并且这种影响受到窗口内平均全局信号(GS)幅度的时间调制。此外,GSR 极大地改变了对高 GS 幅度响应的 FC 状态的连接结构及其时间特征,甚至导致新的 FC 状态的出现。相反,那些与默认模式网络(DMN)相关的明显反相关结构标记的 FC 状态受 GSR 的影响不大。最后,我们报告了窗口化 GS 幅度的波动与个体内部时变 EEG 功率之间的关联,这暗示了 GS 动态背后的心理状态变化。总的来说,这项研究除了认为 GS 动态可能源于干扰源外,还提出了一种潜在的神经心理学基础,并强调在应用 GSR 于滑动窗口相关分析时需要谨慎。至少,在估计 FC 动态时,当评估个体的心理波动时,应在整个扫描期间评估个体的心理波动,可能与持续警觉有关。